Compositions and methods for determining likelihood of an increased susceptibility to contracting Johne&#39;s disease

ABSTRACT

Collections of polynucleotides useful estimating breeding value or detecting likelihood of an increased susceptibility to contracting paratuberculosis are disclosed. The polynucleotides are used to detect genomic sequences quantitatively associated with an increased susceptibility to contracting paratuberculosis trait. Methods for using the collections to estimate breeding value or predict likelihood of an increased susceptibility to contracting paratuberculosis are also provided. Kits comprising the collection of polynucleotides are also provided.

UNITED STATES GOVERNMENT RIGHTS

This invention was made with government support under 2007-35205-17884, 00-52100-9621 and 01-CRHF-0-6055 awarded by the USDA/CSREES. The government has certain rights in the invention.

FIELD OF THE INVENTION

This relates generally to animal genetics and improvements in cattle breeding. More particularly, it relates to compositions and methods for predicting an increased susceptibility to contracting paratuberculosis in cattle.

BACKGROUND

Paratuberculosis, commonly called Johne's disease, is a chronic infection of the small intestine caused by Mycobacterium Avium, ssp. paratuberculosis (“MAP”). Paratuberculosis occurs in a wide variety of animals, but most often in ruminants, especially cattle. The disease presents with symptoms including diarrhea, severe weight loss and decreased milk production. Cattle normally become infected with MAP as calves, but because of the slowly progressive nature of the infection, clinical signs of paratuberculosis are usually not seen until animals are adults. There is no cure for the disease and infected animals ultimately become emaciated and must be removed from the herd much sooner than their non-infected counterparts.

Since the signs of paratuberculosis can be confused with the signs of several other diseases, a diagnosis can be confirmed only by use of laboratory tests. The best way to avoid paratuberculosis is to be as certain as possible that animals brought into the herd are not infected with MAP. There are currently three common ways to test animals for paratuberculosis: culture of fecal samples, DNA probe on fecal samples, and blood tests for antibodies to MAP. The fecal culture tests take 8 to 16 weeks because of the extremely slow growth rate of MAP. MAP bacteria can also be detected in fecal samples by use of sophisticated DNA probe tests. DNA probes are much faster than culturing the organism and can be done within three days. Unfortunately, the commercial kit for doing the DNA probe tests are not yet as sensitive as culture and are only able to detect infected animals when their infection has progressed to the stage where large numbers of MAP are being excreted in the feces. Therefore, animals in early stages of the infection are not detected. There are several blood tests for paratuberculosis, but ELISA tests are considered the most accurate and best standardized. Three ELISA-based tests are licensed by the U.S. Department of Agriculture for detection of MAP-infected cattle. The ELISA tests are fast, simple, inexpensive and able to detect animals that are infected before they show signs of paratuberculosis.

However, all of these test results come too late. The animal is already infected. In addition, tests performed on individual animals are not 100% sensitive, meaning they cannot detect 100% of all infected animals. Instead, the tests are performed on a group of animals to extrapolate that if an entire group tests negative, then the probability the group is free of MAP infection is very high.

Methods for paratuberculosis control depend on the type of animal and the patterns of husbandry. In principle, two strategies must be employed at the same time:

-   -   1. newborn animals must be protected from infection by being         born and raised in a clean environment and fed milk free of MAP;         and     -   2. adult animals carrying the MAP infection must be identified         by laboratory tests and removed from the herd, flock or         enclosure.

A national study of US dairies, Dairy NAHMS 96, found that approximately 22% of US dairy farms have at least 10% of the herd infected with paratuberculosis. The study determined that infected herds experience an average loss of $40 per cow in herds with a low paratuberculosis clinical cull rate, while herds with a high paratuberculosis clinical cull rate lost on average of $227 per cow. This loss was due to reduced milk production, early culling, and poor conditioning at culling. The cost of paratuberculosis in beef herds still needs to be determined.

Therefore, there remains a need for methods of predicting animals that have an increased susceptibility of contracting paratuberculosis and selectively breed away from that increased susceptibility. Paratuberculosis is a good candidate for genetic selection because a) an effective vaccine is not available, b) the disease is not curable, c) it causes significant economic losses, and d) it is potentially zoonotic. Selective breeding to reduce disease susceptibility would be a low cost, sustainable practice.

Previous reports of association of DNA markers with paratuberculosis susceptibility have been limited, and frequently focused on candidate genes. The nucleotide-binding oligomerization domain containing 2 gene (NOD2), previously referred to as the caspase recruitment domain 15 protein gene (CARD 15), is a well characterized gene that contributes to predisposition to Crohn's disease in humans (see recent reviews by Hugot (2006) and Radford-Smith and Pandeya (2006)) and has been the subject of study in cattle as a candidate gene. Taylor et al. (2006) identified 36 NOD2 polymorphisms in a screening of 42 animals from ten different breeds. Association of these polymorphisms with infection could not be adequately tested owing to a paucity of infected animals (n=11). Subsequently, Pinedo et al. (2009a) tested association of three of the NOD2 polymorphisms identified by Taylor et al. (2006) in a case-control study using cattle of dairy (Holstein, Jersey) and beef (Brahman×Angus) types. An association significant at a nominal P<0.01, after controlling for breed, was found for a non-synonymous SNP in the leucine-rich repeat domain of the gene. Evidence for this association came principally from the Brahman×Angus subset of the data. The same data was subsequently re-analyzed considering effects of predicted SNP haplotypes. A haplotype based on two non-synonymous NOD2 SNPs was found significantly associated with infection status (nominal P<0.0001) in an analysis that did not account for breed. The effect attributable to this risk haplotype was due to greater incidence of infection in animals heterozygous for the haplotype (i.e. overdominance). This is in contrast to the effects associated with NOD2 alleles associated with susceptibility to Crohn's disease in humans where the affects manifest in a partial recessive fashion with genotype relative risk increasing exponentially between risk allele heterozygotes to homozygotes or compound heterozygotes (Economou et al. 2004). Analysis of the NOD2 locus in US Holstein cattle in the author's laboratory (unpublished) revealed additional polymorphisms, but none of nine previously or newly identified SNPs genotyped were significantly associated with infection status in a case-control study using 169 case (positive to either ELISA or fecal culture tests or both) and 188 control cows. In addition, only weak evidence of SNP association with infection status was observed for bovine chromosome 18 (location of NOD2) in whole-genome association analyses reported herein. Pinedo et al. (2009a) point out that the NOD2 allele showing association is more frequent in the Brahman×Angus cattle than in the Holstein cattle they utilized which could account for the lack of association observed in the current work with Holsteins

Only two whole genome scans for paratuberculosis susceptibility have been previously reported. Our earlier study of three large sire families (264 to 585 daughters per sire) from Population 1 examined 159 informative microsatellite markers across all 29 autosomal chromosomes. One significant (chromosome-wide P-value=0.032) region on chromosome 20 was found, but the wide spacing of the markers made it impossible to more narrowly localize the region (Gonda et al., 2007). Power of this study was lessened by low marker density and the consideration only of linkage effects. The other previously reported whole genome scan utilized the recently available bovine 50 k SNP set to greatly improve marker density. Settles et al. (2009) used 218 Holstein cows in a case-control design to assess marker association with MAP infection under various definitions of infected phenotype. Phenotypes were assigned based on culture of MAP from fecal and tissue samples (ileum, ileo-cecal valve and ileo-cecal lymph nodes). 112 animals were negative to both tests, with the remainder positive to one or both fecal or tissue culture. Composition of case and control groups varied depending on definition of phenotype (fecal-positive vs. fecal-negative, tissue-positive vs. tissue-negative, etc.) leading in some instances to a small number of case samples (range 25-90). Suggestive associations (p<5×10⁻⁵) were found under various phenotypic definitions on chromosomes 1, 3, 5, 7, 8, 9, 16, 21 and 23. Correspondence between the results reported here and results reported by Settles et al. (2009) are slight, and none are the specific SNPs that Settles et al. found most significant.

Crohn's disease in humans bears some similarity to Johne's disease in cattle in its manifestation, and as a consequence, genes implicated in the development of Crohn's disease have been considered as candidate genes in the study of Johne's disease. Whole genome association (WGA) studies of Crohn's disease in humans (Barrett et al. 2008; Raelson et al. 2007; Welcome Trust Case Control Consortium 2007; Parkes et al. 2007; Rioux et al. 2007; Libioulle et al. 2007) have been more numerous and of larger scale than the study reported herein. Validated results from human Crohn's disease WGA studies, compilation viewable at www.genome.gov/26525384 (Hindorff et al. 2009), have now implicated more than 30 unique chromosomal regions in humans. The correspondence between results reported here or by Settles et al. (2009) for cattle and the results from humans is limited. Applying an arbitrary and liberal constraint of significant human and bovine markers being within a distance of 4 Mb, only the associations reported by Settles et al. (2009) on proximal BTA9 show correspondence with human WGA results and only associations on BTA7 and 20 reported herein show correspondence. Prostaglandin E receptor 4 (PTGER4) and the immunity-related GTPase family, M gene (IRGM), have been identified as candidate genes for the regions corresponding to BTA7 and 20, respectively in human studies. Regarding PTGER4, Libioulle et al. (2007) identified and validated SNP associations in a 1.25 Mb gene desert on HSA5 adjacent to PTGER4 and found SNP associations with variation in PTGER4 expression. Prior work has found that PTGER4 knock-out mice develop severe colitis upon treatment with dextran sodium sulphate, unlike knock-outs for other prostaglandin receptors (Kabashima et al. 2002) supporting its consideration as a candidate gene. Regarding IRGM, The most significant SNP on BTA7 is located within 2 Mb of the location of IRGM, a candidate gene for Crohn's disease in humans based on results from three whole genome association studies (Barrett et al. 2008, Welcome Trust Case Control Consortium 2007, Parkes et al. 2007) and subsequent studies. The SNPs significantly associated with Crohn's disease in this case flanked the IRGM gene, and subsequent analyses failed to reveal non-synonymous SNPs with the IRGM coding regions leading to speculation that functional polymorphism might alter regulation of IRGM. Subsequent work by McCarroll et al. (2008) identified a 20 kb insertion—deletion polymorphism upstream of IRGM that correlated with differences in IRGM expression, and the authors have speculated that this difference in IRGM expression may related to differences in autophagy.

SUMMARY OF THE INVENTION

This disclosure relates generally to identification and the use of a collection of polynucleotide sequences, or polynucleotides, for detecting (by any means known in the art) an at least partially complementary sequence in a cow genome relating to paratuberculosis.

The presence or absence of the at least partially complementary sequences, i.e. the sequences in the cow genome, is quantitatively associated with the trait of an increased susceptibility to contracting paratuberculosis in a cattle population. In various embodiments, the collection comprises at least one sequence that is quantitatively associated with an increased susceptibility to contracting paratuberculosis with statistical significance of at least p≤0.01. Preferred are those collections comprising at least one sequence that is quantitatively associated with an increased susceptibility to contracting paratuberculosis with statistical significance of at least p≤0.001, or even less.

Also provided herein are methods of using the collections for predicting or estimating the likelihood of an increased susceptibility to contracting paratuberculosis. The methods generally comprise the steps of:

-   -   a) providing a collection of one or more polynucleotides, each         of which is at least partially complementary to a sequence in a         cow genome, comprising at least one sequence that is         quantitatively associated with an increased susceptibility to         contracting paratuberculosis with statistical significance of at         least p≤0.01;     -   b) using the collection to determine the presence or absence of         sequences complementary to one or more polynucleotides from the         collection in one or more members of the cattle population         genome, wherein the presence or absence of the complementary         sequences is quantitatively associated with the trait of an         increased susceptibility to contracting paratuberculosis in a         cattle population; and     -   c) estimating the likelihood of an increased susceptibility to         contracting paratuberculosis based on the results of step b).

Kits providing the collections and instructions for using them in predicting the likelihood of an increased susceptibility to contracting paratuberculosis are also provided.

Other and further objects, features, and advantages of the present invention will be readily apparent to those skilled in the art.

BRIEF DESCRIPTION OF THE DRAWINGS

FIG. 1: Results of whole genome scan of Population 1 for genetic marker association with susceptibility to infection of cattle by MAP. Vertical panels denote individual chromosomes as indicated at the top of each panel. Each point represents the −log 10 of the P-value (y-axis) from linkage disequilibrium (top; “A”), linkage (center; “L”) and combined linkage-linkage disequilibrium (bottom; “LL”) analyses, relative to genomic location of the SNP marker (x-axis). A total of 35,772 polymorphic SNP markers were included in the analysis. The dashed and dotted lines represent p-values of 5×10⁻⁵ and 1×10⁻⁷, respectively, corresponding to suggestive and significant results.

FIG. 2: Results of whole genome scan of Population 2 for genetic marker association with susceptibility to infection of cattle by MAP. Vertical panels denote individual chromosomes as indicated at the top of each panel. Each point represents the −log 10 of the P-value (y-axis) from tests of difference in allelic (top; “A”) and genotypic (bottom; “G”:) frequencies for case (cows ELISA-positive for MAP infection) and control (Holstein artificial insemination sires, as described in the text). Minus Log₁₀ (P-value) is plotted relative to genomic location of the SNP marker (x-axis). A total of 35, 772 polymorphic SNP markers were included in the analysis. The dashed and dotted lines represent p-values of 5×10⁻⁵ and 1×10⁻⁷, respectively, corresponding to suggestive and significant results.

FIG. 3: Results of whole genome scan for genetic marker association with susceptibility to infection of cattle by MAP combining information across populations. Vertical panels denote individual chromosomes as indicated at the top of each panel. Each point represents the −log 10 of the P-value (y-axis) from a linkage disequilibrium analysis (allelic association: top panel, “AS”) or a combined linkage-linkage disequilibrium analysis (bottom panel, “LL”), relative to genomic location of the SNP marker (x-axis). A total of 35,772 polymorphic SNP markers were included in the analysis.

DETAILED DESCRIPTION

The present application incorporates by reference SEQ ID NO: 1-197 provided herewith on a the files titled All_SNP_081810.txt and Preferred_SNP_081810.txt, created on Aug. 18, 2010.

Definitions

the following abbreviations may be used herein:

cM, centiMorgan;

CWER, comparison-wise error rates;

FDS, false discovery rate;

HWE, Hardy-Weinberg equilibrium;

IBD, identity by descent;

Kb, kilobase;

LD, linkage disequilibrium;

LLD, linkage-linkage disequilibrium;

LRT, log-likelihood ratio;

MAF, minor allel frequency;

MB, megabase;

NCBI, National Center for Biotechnology Information;

PEV, prediction error variance;

PTA, predicted transmitting ability;

QTL, quantitative trail loci;

SNP; single nucleotide polymorphism;

The term “individual” when referring to an animal means an individual animal of any species or kind.

The term “animal” is used in a general sense and means a human or other animal, including avian, bovine, canine, equine, feline, hicrine, lupine, murine, ovine, and porcine animals. Preferably the animal is a mammal, particularly a bovine. Unless otherwise specified, or clear from the context, the term “mammal” herein includes human.

As used herein, “linkage disequilibrium” (or “LD”) refers to allelic association between specific alleles at two or more neighboring loci in the genome, e.g., within a population. LD can be determined for a single marker or locus, or multiple markers. LD is sometimes expressed herein as r² values where r²=1/(4N_(e)c+1) where c=recombination rate (M), and Ne=effective population size. (Sved, 1971)

As used herein, “allele” refers to one or more alternative forms of a particular sequence that contains an SNP. The sequence may or may not be within a gene, and may be within a coding or noncoding portion and such a gene, and may be within an exon or an intron of a particular gene.

“Quantitative trait locus,” (or “QTL”), as used herein is a genomic sequence that is associated with a particular phenotypic trait. Multiple QTL may be identified for a particular trait, and they are frequently found on different chromosomes. The number of QTLs that associate significantly with a particular phenotypic trait may provide an indication of the genetic architecture of a trait, the number of genes that affect the trait, or the extent of the affect of one or more of those genes. One or more QTL that significantly associates with a trait may be candidate genes underlying that trait, which can be sequenced and identified. The significance of the degree of association of a given QTL with a particular trait can be assessed statistically, e.g. through QTL mapping of the alleles that occur in a locus and the phenotypes that they produce. Statistical analysis is preferred to demonstrate whether an observed association with a trait is significant. The presence of a QTL, and its location identify a particular region of the genome as potentially containing a gene that is associated, directly (e.g., structurally) or indirectly (e.g., regulatory) with the trait being analyzed. The probability of association can be plotted for various markers associated with the trait spaced across a chromosome, or throughout the genome.

A “polynucleotide” includes single-stranded or a multi-stranded nucleic acid molecules comprising two or more sequential bases, including any single strand or parallel and anti-parallel strands of a multi-stranded nucleic acid. Polynucleotide may be of any length, and thus, include very large nucleic acids, as well as short ones, such as oligonucleotides.

The term “oligonucleotide” typically refers to short polynucleotides, generally no greater than about 50 nucleotides. It will be understood that if a nucleotide sequence is denoted represented by a DNA sequence (i.e., A, T, G, C), the corresponding RNA sequence (i.e., A, U, G, C, wherein “U” replaces “T”) is also included.

As used throughout, ranges herein are stated in shorthand, so as to avoid having to set out at length and describe each and every value within the range. Any appropriate value within the range can be selected, where appropriate, as the upper value, lower value, or the terminus of the range. For example, a range of 0.1-1.0 represents the terminal values or 0.1 and 1.0, as well as the intermediate values of 0.2, 0.3, 0.4, 0.5, 0.6, 0.7, 0.8, 0.9, and all intermediate ranges encompassed within 0.1-1.0, such as 0.2-0.5, 0.2-0.8, 0.7-1.0, and so on.

As used herein and in the appended claims, the singular form of a word includes the plural, and vice versa, unless the context clearly dictates otherwise. Thus, the references “a”, “an”, and “the” are generally inclusive of the plurals of the respective terms. For example, reference to “a SNP”, “a method”, or “a trait” includes a plurality of such “SNPs”, “methods”, or “traits.” Reference herein, for example to “an association” includes a plurality of such associations, whereas reference to “chromosomes” includes a single chromosome where such’ interpretation is not precluded from the context. Similarly, the words “comprise”, “comprises”, and “comprising” are to be interpreted inclusively rather than exclusively. Likewise the terms “include”, “including” and “or” should all be construed to be inclusive, unless such a construction is clearly prohibited from the context. Where used herein the term “examples,” particularly when followed by a listing of terms is merely exemplary and illustrative, and should not be deemed to be exclusive or comprehensive.

The methods and compositions and other advances disclosed here are not limited to particular methodology, protocols, and reagents described herein because, as the skilled artisan will appreciate, they may vary. Further, the terminology used herein is for the purpose of describing particular embodiments only, and is not intended to, and does not, limit the scope of that which is disclosed or claimed.

Unless defined otherwise, all technical and scientific terms, terms of art, and acronyms used herein have the meanings commonly understood by one of ordinary skill in the art in the field(s) of the invention, or in the field(s) where the term is used. Although any compositions, methods, articles of manufacture, or other means or materials similar or equivalent to those described herein can be used in the practice of the present invention, the preferred compositions, methods, articles of manufacture, or other means or materials are described herein.

All patents, patent applications, publications, technical and/or scholarly articles, and other references cited or referred to herein are in their entirety incorporated herein by reference to the extent allowed by law. The discussion of those references is intended merely to summarize the assertions made therein. No admission is made that any such patents, patent applications, publications or references, or any portion thereof, are relevant, material, or prior art. The right to challenge the accuracy and pertinence of any assertion of such patents, patent applications, publications, and other references as relevant, material, or prior art is specifically reserved. Full citations for publications not cited fully within the specification are set forth at the end of the specification.

Details

In a first of its several aspects, this disclosure relates to a collection of polynucleotide sequences, or polynucleotides, each of which is at least partially complementary to a sequence in a cow genome. The presence or absence of the at least partially complementary sequences, i.e. the sequences in the cow genome, is quantitatively associated with the trait of an increased susceptibility to contracting paratuberculosis in a cattle population. In various embodiments, the collection comprises at least one sequence that is quantitatively associated with an increased susceptibility to contracting paratuberculosis with statistical significance of at least p≤0.01. Preferred are those collections comprising at least one sequence that is quantitatively associated with an increased susceptibility to contracting paratuberculosis with statistical significance of at least p≤0.001, or even less. In various embodiments, the statistical significance of the quantitative association with an increased susceptibility to contracting paratuberculosis is p≤0.001, p≤0.0009, p≤0.0008, p≤0.0007, p≤0.0006, p≤0.0005, or even less. Most preferred are embodiments that have statistical significance of p≤10-4, 10-5, or even 10-6, or lower. Thus, the more highly significant (i.e., the lower the p value) the association is, the more useful the polynucleotide collection can be for predicting an increased susceptibility to contracting paratuberculosis. In certain embodiments, polynucleotides useful for indicating the presence or absence of genomic sequences whose association with an increased susceptibility to contracting paratuberculosis is, from a statistical view, only suggestive, may be useful herein. More preferred are those polynucleotides useful for indicating the presence or absence of genomic sequences whose association with an increased susceptibility to contracting paratuberculosis is highly suggestive, significant, or even highly significant. The skilled artisan will understand that the statistical significance levels deemed suggestive, highly suggestive, significant, or highly significant will vary based on the particular statistical measures used, and the underlying data used to generate the measures of association. Examples of such statistical measures are shown in the working examples.

The collection of polynucleotides is useful for predicting an increased susceptibility to contracting paratuberculosis rate or likelihood of an increased susceptibility to contracting paratuberculosis within an individual member of a population, or within a herd, and is also useful for other purposes, such as estimating breeding value in cattle, whether for genetic purposes (e.g. breed improvement, herd management, and the like), or for economic considerations (e.g., determining or estimating sale or replacement value of an animal or reproductive material from an animal, predicting the value of offspring, estimating gain or loss for milk or meat production (e.g., practical cost or impact of an increased susceptibility to contracting paratuberculosis for farmer) or the like), or a combination thereof.

The polynucleotides in the collection can be any sequences, for example, they could encompass a portion of structural genes, regulatory genes, or other sequences, e.g., SNPs, microsatellite sequences, or other sequences of any length found in a genome. The polynucleotides of the collections may correspond to either strand of a nucleic acid heteroduplex. In some embodiments, the polynucleotides are completely complementary to a portion of a genome, while in others they may be less than completely complementary, provided that they are useful for detecting at least a partially complementary sequence in the genome. For example, in various applications the polynucleotides may be used as primers for amplifying specific sequences to be detected, which may not require 100% complementarity. In other embodiments, the polynucleotide may be used as probes for binding to various sequences to be detected. In one presently preferred embodiment, each polynucleotide is useful for detecting the presence or absence of one allele of an SNP in the cow genome. In other embodiments, each polynucleotide comprises one allele of an SNP in the cow genome, or its complement.

The collection can comprise sequences distributed throughout the genome. In one embodiment of the collection, at least one of the polynucleotides is complementary to a sequence located on any bovine chromosome. In one embodiment, the preferred chromosomes include one or more of chromosomes 2, 3, 4, 5, 6, 7, 9, 10, 13, 14, 15, 16, 17, 18, 20, 21, 22, 23, 25, 26 and 29.

In another, bovine chromosome 13 (BTA13) is preferred. Especially preferred are particular regions of chromosome 13, including those that are near or encode certain genes. In another embodiment, at least one of the polynucleotides is complementary to a sequence that maps between 4-71 Mb of BTA7. In various embodiments, the collection comprises one or more polynucleotides complementary to a sequence that maps at either of 4-6 Mb, 31-34 Mb or 70-72 Mb of BTA7.

In another, bovine chromosome 16 (BTA16) is preferred. Especially preferred are particular regions of chromosome 16, including those that are near or encode certain genes. In another embodiment, at least one of the polynucleotides is complementary to a sequence that maps between 21-70 Mb of BTA16. In various embodiments, the collection comprises one or more polynucleotides complementary to a sequence that maps at either of 21-23 Mb or 60-70 Mb of BTA7.

In another, bovine chromosome 20 (BTA20) is preferred. In one embodiment, at least one of the polynucleotides is complementary to a sequence that maps between 31-67 Mb of BTA20. Especially preferred are particular regions of chromosome 20, including those that are near or encode certain genes. In various embodiments, the collection comprises one or more polynucleotides complementary to a sequence that maps on BTA20 at either of 31-35 Mb or 65-68 Mb of BTA20. In a currently preferred embodiment, at least one of the polynucleotides is complementary to a sequence that maps between 31-35 Mb of BTA20.

In another, bovine chromosome 21 (BTA21) is preferred. Especially preferred are particular regions of chromosome 21, including those that are near or encode certain genes. In another embodiment, at least one of the polynucleotides is complementary to a sequence that maps between 19-68 Mb of BTA7. In various embodiments, the collection comprises one or more polynucleotides complementary to a sequence that maps at either of 19-25 Mb or 61-69 Mb of BTA7.

In another, bovine chromosome 26 (BTA26) is preferred. In one embodiment, at least one of the polynucleotides is complementary to a sequence that maps between 34-40 Mb of BTA26. Also useful are polynucleotides that can identify the presence or absence of sequences which map to various overlapping or more specific locations, as set forth in the Examples below.

In one presently preferred embodiment, the collection comprise at least one polynucleotide complementary to a sequence located with high LD to a genomic sequence for Prostaglandin E receptor 4 (“PTGER4”). In another presently preferred embodiment, the collection comprises at least one polynucleotide complementary to a sequence located with high LD to a genomic sequence for immunity-related GTPase family, M gene (“IRGM”). Certain preferred collections of polynucleotides feature one or more sequences that can be used to identify the presence or absence of, for example, SNPs within PTGER4 or IRGM. PTGER4 and IRGM each has been identified herein as a positional candidate that is significantly associated with an increased susceptibility to contracting Crohn's disease. However, of the more than 30 unique human chromosomal regions implicated by previous studies, correspondence between results between cattle and human is limited.

The collection can also comprise at least one polynucleotide useful for detecting one or more specific SNPs. For example, the SNPs given in Table A have been quantitatively associated with an increased susceptibility to contracting paratuberculosis, and are thus sequences for detecting their presence are useful herein.

In various embodiments of the collections or the methods below, the SNPs comprise one or more of the SNPs listed in Table A.

TABLE A SNPs Useful for Predicting An Increased Susceptibility To Contracting Paratuberculosis SNP_ID BTA/Mb Chi-squared P-value SEQ ID NO 1 Hapmap57166-rs29020401 13/34.10 38.57 4.21E−09 SEQ ID NO 2 ARS-BFGL-NGS-63936 20/36.42 30.03 3.01E−07 SEQ ID NO 3 ARS-BFGL-NGS-84088 20/35.59 29.61 3.71E−07 SEQ ID NO 4 ARS-BFGL-BAC-13827 13/33.53 29.51  3.9E−07 SEQ ID NO 5 Hapmap52062-rs29027270 26/43.49 28.74 5.75E−07 SEQ ID NO 6 ARS-BFGL-NGS-95663 20/33.46 28.5 6.48E−07 SEQ ID NO 7 Hapmap48854-BTA-69129  3/103.69 28.34 7.02E−07 SEQ ID NO 8 Hapmap51130-BTA-105627 23/32.11 27.96 8.47E−07 SEQ ID NO 9 ARS-BFGL-NGS-38328 13/33.67 27.65 9.93E−07 SEQ ID NO 10 ARS-BFGL-NGS-38574 20/38.27 27.55 1.04E−06 SEQ ID NO 11 ARS-BFGL-NGS-23255 26/34.93 27.24 1.22E−06 SEQ ID NO 12 BTA-13956-no-rs 14/64.31 26.75 1.55E−06 SEQ ID NO 13 Hapmap54042-ss46526396 22/12.41 26.22 2.02E−06 SEQ ID NO 14 BTB-00261837  6/66.68 25.88  2.4E−06 SEQ ID NO 15 ARS-BFGL-NGS-16165 16/64.91 25.53 2.86E−06 SEQ ID NO 16 ARS-BFGL-NGS-114768 26/38.92 25.11 3.52E−06 SEQ ID NO 17 ARS-BFGL-NGS-84831 21/21.94 24.82 4.07E−06 SEQ ID NO 18 ARS-BFGL-NGS-55787 12/36.31 24.8 4.11E−06 SEQ ID NO 19 ARS-BFGL-NGS-18067 22/12.45 24.72 4.28E−06 SEQ ID NO 20 ARS-BFGL-NGS-114979 23/16.63 24.71 4.31E−06 SEQ ID NO 21 Hapmap41410-BTA-104176  7/63.04 24.67  4.4E−06 SEQ ID NO 22 ARS-BFGL-NGS-84327 13/5.54  24.39 5.05E−06 SEQ ID NO 23 ARS-BFGL-NGS-116261 19/61.05 24.27 5.36E−06 SEQ ID NO 24 BTB-00779241 20/35.78 24.19  5.6E−06 SEQ ID NO 25 Hapmap51169-BTA-122103  7/56.17 24.11 5.82E−06 SEQ ID NO 26 ARS-BFGL-BAC-31757 20/67.43 23.8 6.79E−06 SEQ ID NO 27 Hapmap51780-BTA-93959 18/38.44 23.62 7.41E−06 SEQ ID NO 28 BTB-00553468 14/18.76 23.47 0.000008 SEQ ID NO 29 Hapmap42075-BTA-114094 16/69.88 23.28 8.79E−06 SEQ ID NO 30 BTB-01278461  4/85.43 23.14 9.43E−06 SEQ ID NO 31 ARS-BFGL-NGS-12828 26/37.06 23.1 9.63E−06 SEQ ID NO 32 BTA-116871-no-rs 17/28.19 23.07 9.77E−06 SEQ ID NO 33 Hapmap46604-BTA-35152 14/60.13 23.06 9.82E−06 SEQ ID NO 34 BTA-15204-no-rs 20/34.74 23.05 9.86E−06 SEQ ID NO 35 BTA-61435-no-rs 26/36.89 22.96 1.04E−05 SEQ ID NO 36 Hapmap51346-BTA-89239 9/6.17 22.92 1.05E−05 SEQ ID NO 37 Hapmap49609-BTA-43790 18/51.49 22.88 1.07E−05 SEQ ID NO 38 Hapmap38462-BTA-110556 20/58.48 22.81 1.11E−05 SEQ ID NO 39 Hapmap30871-BTA-158348  8/64.55 22.72 1.16E−05 SEQ ID NO 40 ARS-BFGL-NGS-106176 23/23.10 22.58 1.25E−05 SEQ ID NO 41 ARS-BFGL-NGS-31976 13/71.05 22.19 1.52E−05 SEQ ID NO 42 BTA-21660-no-rs 12/35.67 22.16 1.54E−05 SEQ ID NO 43 BTB-00170785  4/25.67 22.08 0.000016 SEQ ID NO 44 ARS-BFGL-NGS-10383 10/47.26 22.01 1.66E−05 SEQ ID NO 45 Hapmap56950-ss46526304  3/114.08 21.99 1.68E−05 SEQ ID NO 46 ARS-BFGL-NGS-14399 12/36.16 21.62 2.02E−05 SEQ ID NO 47 ARS-BFGL-NGS-114316 26/38.21 21.6 2.04E−05 SEQ ID NO 48 BTB-01219956 26/12.53 21.57 2.07E−05 SEQ ID NO 49 Hapmap24928-BTC-010710 14/28.42 21.52 2.12E−05 SEQ ID NO 50 ARS-BFGL-NGS-34049 20/35.27 21.38 2.28E−05 SEQ ID NO 51 ARS-BFGL-NGS-116806 20/36.51 21.2 2.49E−05 SEQ ID NO 52 ARS-BFGL-NGS-13451 16/70.81 21.18 2.52E−05 SEQ ID NO 53 UA-IFASA-8974 20/31.97 21.14 2.57E−05 SEQ ID NO 54 Hapmap27079-BTC-039967  6/51.32 21.11 2.61E−05 SEQ ID NO 55 ARS-BFGL-NGS-84112  4/102.05 20.77 3.08E−05 SEQ ID NO 56 ARS-BFGL-BAC-32359 20/47.27 20.73 3.15E−05 SEQ ID NO 57 ARS-BFGL-NGS-101744 15/69.30 20.63 3.31E−05 SEQ ID NO 58 Hapmap41219-BTA-29565 24/32.30 20.53 3.48E−05 SEQ ID NO 59 Hapmap50053-BTA-61516 26/38.98 20.49 3.55E−05 SEQ ID NO 60 ARS-BFGL-NGS-115504 25/21.17 20.45 3.62E−05 SEQ ID NO 61 BTB-00780124 20/35.88 20.22 4.07E−05 SEQ ID NO 62 ARS-BFGL-NGS-101940 21/19.58 20.16 4.19E−05 SEQ ID NO 63 ARS-BFGL-BAC-34694 16/58.70 20.14 4.23E−05 SEQ ID NO 64 Hapmap59495-rs29020511 24/32.95 20.03 4.47E−05 SEQ ID NO 65 ARS-BFGL-NGS-3711 13/48.43 19.82 4.96E−05 SEQ ID NO 66 BTB-01342789  1/18.87 19.76 5.12E−05 SEQ ID NO 67 ARS-BFGL-NGS-91446  3/109.35 19.73 5.19E−05 SEQ ID NO 68 Hapmap50774-BTA-76325  6/51.29 19.7 5.26E−05 SEQ ID NO 69 ARS-BFGL-NGS-32123 15/43.28 19.7 5.26E−05 SEQ ID NO 70 BTB-01843749  9/35.20 19.57 5.63E−05 SEQ ID NO 71 ARS-BFGL-NGS-29032 16/61.38 19.45 5.98E−05 SEQ ID NO 72 Hapmap49679-BTA-61690 26/42.56 19.38 6.18E−05 SEQ ID NO 73 BTA-90616-no-rs 20/29.25 19.32 6.37E−05 SEQ ID NO 74 BTA-100341-no-rs 26/34.88 19.31 6.42E−05 SEQ ID NO 75 ARS-BFGL-NGS-30004 23/16.66 19.29 6.48E−05 SEQ ID NO 76 ARS-BFGL-NGS-41833 20/66.58 19.21 6.73E−05 SEQ ID NO 77 Hapmap55208-ss46526613 2/0.56 19.14 6.99E−05 SEQ ID NO 78 UA-IFASA-7062 14/28.50 19.12 7.05E−05 SEQ ID NO 79 Hapmap43556-BTA-33007 13/56.98 19.04 7.35E−05 SEQ ID NO 80 ARS-BFGL-NGS-26323  9/29.68 19.01 7.43E−05 SEQ ID NO 81 ARS-BFGL-NGS-52539 10/18.96 18.96 7.62E−05 SEQ ID NO 82 Hapmap43854-BTA-43847 18/56.40 18.93 7.76E−05 SEQ ID NO 83 ARS-BFGL-NGS-111520 15/76.24 18.83 8.14E−05 SEQ ID NO 84 Hapmap43873-BTA-50695 20/45.91 18.64 8.96E−05 SEQ ID NO 85 BTB-00617870 15/78.61 18.55 9.38E−05 SEQ ID NO 86 BTA-28297-no-rs 10/19.03 18.47 9.75E−05 SEQ ID NO 87 BTA-61688-no-rs 26/42.60 18.42 0.0001 SEQ ID NO 88 ARS-BFGL-NGS-112293 15/63.04 18.36 0.000103 SEQ ID NO 89 BTA-60642-no-rs 25/8.65  18.09 0.000118 SEQ ID NO 90 ARS-BFGL-NGS-36892 17/67.75 17.91 0.000129 SEQ ID NO 91 BTB-00310653  7/46.58 17.68 0.000145 SEQ ID NO 92 Hapmap49429-BTA-107409 16/69.99 17.65 0.000147 SEQ ID NO 93 ARS-BFGL-NGS-17676 20/39.04 17.62 0.00015 SEQ ID NO 94 BTA-114108-no-rs  1/26.10 17.58 0.000152 SEQ ID NO 95 Hapmap32845-BTA-152047 26/35.72 17.57 0.000153 SEQ ID NO 96 ARS-BFGL-NGS-36809 13/31.48 17.5 0.000159 SEQ ID NO 97 Hapmap38112-BTA-50631 20/42.72 17.35 0.00017 SEQ ID NO 98 ARS-BFGL-NGS-86252 23/16.59 17.15 0.000189 SEQ ID NO 99 ARS-BFGL-NGS-42452  7/65.74 17.09 0.000194 SEQ ID NO 100 Hapmap41054-BTA-67528  3/34.52 17.02 0.000201 SEQ ID NO 101 Hapmap48202-BTA-118947 20/30.16 17.02 0.000201 SEQ ID NO 102 BTB-01731152 17/28.15 16.95 0.000208 SEQ ID NO 103 BTB-01337853 12/66.70 16.73 0.000233 SEQ ID NO 104 Hapmap56001-rs29023690 16/62.05 16.66 0.000241 SEQ ID NO 105 Hapmap55502-rs29014080  6/72.21 16.14 0.000313 SEQ ID NO 106 Hapmap38405-BTA-35996 14/18.90 16.11 0.000318 SEQ ID NO 107 Hapmap43792-BTA-122725 13/83.21 16.08 0.000323 SEQ ID NO 108 ARS-BFGL-NGS-55607 29/5.03  16.05 0.000327 SEQ ID NO 109 Hapmap48185-BTA-112403 24/27.36 16.01 0.000333 SEQ ID NO 110 BTA-119803-no-rs 11/83.28 15.66 0.000397 SEQ ID NO 111 Hapmap49750-BTA-76652  6/72.25 15.43 0.000447 SEQ ID NO 112 Hapmap52400-rs29025316  7/54.59 15.39 0.000456 SEQ ID NO 113 BTA-121819-no-rs  7/105.09 15.37 0.000459 SEQ ID NO 114 ARS-BFGL-NGS-100092 26/36.33 15.37 0.000459 SEQ ID NO 115 ARS-BFGL-NGS-23638 26/41.14 15.29 0.000478 SEQ ID NO 116 Hapmap43736-BTA-98788 13/26.26 15.21 0.000497 SEQ ID NO 117 ARS-BFGL-NGS-43032 16/14.39 15.18 0.000504 SEQ ID NO 118 ARS-BFGL-NGS-101723 10/11.22 15.14 0.000515 SEQ ID NO 119 BTB-01887959 22/9.23  15.13 0.000519 SEQ ID NO 120 Hapmap47541-BTA-22031 20/39.61 14.99 0.000556 SEQ ID NO 121 Hapmap39665-BTA-59836 25/26.31 14.83 0.000602 SEQ ID NO 122 ARS-BFGL-NGS-1808 14/83.04 14.8 0.00061 SEQ ID NO 123 ARS-BFGL-NGS-21527 25/25.75 14.76 0.000624 SEQ ID NO 124 UA-IFASA-4794 28/22.77 14.71 0.000638 SEQ ID NO 125 ARS-BFGL-NGS-76451  1/138.44 14.61 0.000674 SEQ ID NO 126 BTB-00360436  8/76.85 14.31 0.00078 SEQ ID NO 127 BTB-01790614 6/3.21 14.25 0.000806 SEQ ID NO 128 ARS-BFGL-NGS-86477 21/67.62 14.2 0.000826 SEQ ID NO 129 Hapmap25321-BTA-156840 22/9.37  14.17 0.000838 SEQ ID NO 130 BTB-00783271 20/41.21 13.76 0.00103 SEQ ID NO 131 Hapmap47083-BTA-71984  4/100.70 13.72 0.00105 SEQ ID NO 132 BTB-01092452  8/81.40 13.46 0.0012 SEQ ID NO 133 Hapmap48829-BTA-61554 26/39.68 13.41 0.00123 SEQ ID NO 134 BTA-19348-no-rs  8/64.88 13.35 0.00126 SEQ ID NO 135 ARS-BFGL-NGS-33495  8/88.53 13.18 0.00137 SEQ ID NO 136 BTB-01475042 20/51.95 13.17 0.00138 SEQ ID NO 137 ARS-BFGL-NGS-113490  3/109.84 13.05 0.00147 SEQ ID NO 138 ARS-BFGL-NGS-32966  9/38.39 12.74 0.00171 SEQ ID NO 139 ARS-BFGL-NGS-2600 24/19.69 12.69 0.00175 SEQ ID NO 140 Hapmap51600-BTA-50467 20/36.77 12.66 0.00178 SEQ ID NO 141 BTB-01112664  2/19.39 12.64 0.0018 SEQ ID NO 142 UA-IFASA-1789 14/34.76 12.44 0.00199 SEQ ID NO 143 Hapmap45971-BTA-102151 11/69.73 11.88 0.00263 SEQ ID NO 144 ARS-BFGL-NGS-7597  4/102.25 11.48 0.00322 SEQ ID NO 145 ARS-BFGL-NGS-23298 19/60.94 11.2 0.00369 SEQ ID NO 146 ARS-BFGL-NGS-103845  7/56.99 11.19 0.00371 SEQ ID NO 147 Hapmap59876-rs29018046  2/14.00 11.08 0.00392 SEQ ID NO 148 ARS-BFGL-NGS-102130 24/41.61 10.89 0.00431 SEQ ID NO 149 BTA-72108-no-rs  4/108.78 10.85 0.0044 SEQ ID NO 150 BTB-01839787 17/30.34 10.69 0.00478 SEQ ID NO 151 Hapmap56784-rs29012419 20/52.23 9.89 0.00714 SEQ ID NO 152 ARS-BFGL-NGS-84716 15/82.47 9.74 0.00767 SEQ ID NO 153 Hapmap43830-BTA-29180 13/82.90 9.73 0.00772 SEQ ID NO 154 ARS-BFGL-NGS-34254  5/27.55 9.48 0.00873 SEQ ID NO 155 ARS-BFGL-NGS-49057  3/72.95 9.42 0.00901 SEQ ID NO 156 Hapmap50205-BTA-107882  9/78.41 9.04 0.0109 SEQ ID NO 157 ARS-BFGL-NGS-18128 17/21.16 8.98 0.0112 SEQ ID NO 158 ARS-BFGL-NGS-21860 17/24.67 8.74 0.0127 SEQ ID NO 159 Hapmap40908-BTA-121388 23/6.69  8.67 0.0131 SEQ ID NO 160 BTA-111934-no-rs  9/52.95 8.62 0.0134 SEQ ID NO 161 UA-IFASA-8351 23/36.28 8.6 0.0136 SEQ ID NO 162 ARS-BFGL-NGS-16677 29/37.34 8.28 0.0159 SEQ ID NO 163 BTA-27242-no-rs  5/20.21 7.74 0.0209 SEQ ID NO 164 ARS-BFGL-NGS-109845 29/19.50 7.66 0.0217 SEQ ID NO 165 ARS-BFGL-NGS-118058  2/23.36 7.65 0.0218 SEQ ID NO 166 Hapmap58939-rs29011360  3/43.09 7.59 0.0224 SEQ ID NO 167 ARS-BFGL-NGS-106807 15/41.61 7.31 0.0259 SEQ ID NO 168 ARS-BFGL-NGS-74054 24/42.08 7.16 0.0279 SEQ ID NO 169 ARS-BFGL-NGS-53471  6/116.93 7.1 0.0287 SEQ ID NO 170 ARS-BFGL-NGS-112793 12/86.28 6.92 0.0314 SEQ ID NO 171 Hapmap55067-ss46526268 23/18.58 6.88 0.032 SEQ ID NO 172 Hapmap45550-BTA-32092 13/36.23 6.43 0.0402 SEQ ID NO 173 ARS-BFGL-NGS-75935 21/24.69 6.3 0.043 SEQ ID NO 174 BTA-100864-no-rs 13/9.08  6.2 0.045 SEQ ID NO 175 ARS-BFGL-NGS-117518 17/28.09 6.2 0.0451 SEQ ID NO 176 Hapmap26742-BTA-156593 17/42.53 6.1 0.0472 SEQ ID NO 177 ARS-BFGL-NGS-39305 13/4.74  5.71 0.0575 SEQ ID NO 178 Hapmap60394-rs29020827 13/71.23 5.54 0.0627 SEQ ID NO 179 UA-IFASA-2293 20/59.45 5.47 0.0648 SEQ ID NO 180 ARS-BFGL-NGS-114525  7/53.19 5.28 0.0714 SEQ ID NO 181 BTB-01250562  7/82.51 5.01 0.0816 SEQ ID NO 182 Hapmap43880-BTA-54826 22/52.10 4.8 0.0909 SEQ ID NO 183 ARS-BFGL-NGS-115608 21/24.71 4.79 0.0912 SEQ ID NO 184 BTA-54617-no-rs 22/45.42 4.55 0.103 SEQ ID NO 185 BTB-01011603 29/21.15 4.45 0.108 SEQ ID NO 186 ARS-BFGL-NGS-102205  2/94.47 4.05 0.132 SEQ ID NO 187 ARS-BFGL-NGS-24141  9/91.47 3.94 0.139 SEQ ID NO 188 ARS-BFGL-NGS-39985 13/71.17 3.83 0.147 SEQ ID NO 189 ARS-BFGL-NGS-101621 13/76.41 3.61 0.164 SEQ ID NO 190 ARS-BFGL-NGS-23356 13/5.26  3.6 0.165 SEQ ID NO 191 ARS-BFGL-NGS-55380 16/22.06 3.34 0.188 SEQ ID NO 192 Hapmap51102-BTA-97964  6/54.36 2.87 0.238 SEQ ID NO 193 BTA-34427-no-rs  2/112.67 2.8 0.247 SEQ ID NO 194 ARS-BFGL-NGS-79435 29/16.50 1.23 0.54 SEQ ID NO 195 BTB-01195060  7/54.86 0.74 0.69 SEQ ID NO 196 ARS-BFGL-NGS-64241  9/76.67 0.74 0.691 SEQ ID NO 197 ARS-BFGL-NGS-3747 27/37.86 0.39 0.822

In various embodiments of the collections or the methods below, the SNPs preferably comprise one or more of the SNPs listed in Table B.

TABLE B Preferred SNPs Useful for Predicting an Increased Susceptibility To Contracting Paratuberculosis SNP_ID BTA/Mb SEQ ID NO 4 ARS-BFGL-BAC-13827 13/33.53 SEQ ID NO 8 Hapmap51130-BTA-105627 23/32.11 SEQ ID NO 12 BTA-13956-no-rs 14/64.31 SEQ ID NO 14 BTB-00261837  6/66.68 SEQ ID NO 15 ARS-BFGL-NGS-16165 16/64.91 SEQ ID NO 16 ARS-BFGL-NGS-114768 26/38.92 SEQ ID NO 25 Hapmap51169-BTA-122103  7/56.17 SEQ ID NO 29 Hapmap42075-BTA-114094 16/69.88 SEQ ID NO 34 BTA-15204-no-rs 20/34.74 SEQ ID NO 35 BTA-61435-no-rs 26/36.89 SEQ ID NO 36 Hapmap51346-BTA-89239 9/6.17 SEQ ID NO 37 Hapmap49609-BTA-43790 18/51.49 SEQ ID NO 41 ARS-BFGL-NGS-31976 13/71.05 SEQ ID NO 45 Hapmap56950-ss46526304  3/114.08 SEQ ID NO 53 UA-IFASA-8974 20/31.97 SEQ ID NO 57 ARS-BFGL-NGS-101744 15/69.30 SEQ ID NO 60 ARS-BFGL-NGS-115504 25/21.17 SEQ ID NO 61 BTB-00780124 20/35.88 SEQ ID NO 62 ARS-BFGL-NGS-101940 21/19.58 SEQ ID NO 71 ARS-BFGL-NGS-29032 16/61.38 SEQ ID NO 74 BTA-100341-no-rs 26/34.88 SEQ ID NO 76 ARS-BFGL-NGS-41833 20/66.58 SEQ ID NO 78 UA-IFASA-7062 14/28.50 SEQ ID NO 85 BTB-00617870 15/78.61 SEQ ID NO 86 BTA-28297-no-rs 10/19.03 SEQ ID NO 89 BTA-60642-no-rs 25/8.65  SEQ ID NO 95 Hapmap32845-BTA-152047 26/35.72 SEQ ID NO 96 ARS-BFGL-NGS-36809 13/31.48 SEQ ID NO 102 BTB-01731152 17/28.15 SEQ ID NO 112 Hapmap52400-rs29025316  7/54.59 SEQ ID NO 128 ARS-BFGL-NGS-86477 21/67.62 SEQ ID NO 129 Hapmap25321-BTA-156840 22/9.37  SEQ ID NO 133 Hapmap48829-BTA-61554 26/39.68 SEQ ID NO 141 BTB-01112664  2/19.39 SEQ ID NO 144 ARS-BFGL-NGS-7597  4/102.25 SEQ ID NO 149 BTA-72108-no-rs  4/108.78 SEQ ID NO 150 BTB-01839787 17/30.34 SEQ ID NO 154 ARS-BFGL-NGS-34254  5/27.55 SEQ ID NO 162 ARS-BFGL-NGS-16677 29/37.34 SEQ ID NO 164 ARS-BFGL-NGS-109845 29/19.50 SEQ ID NO 171 Hapmap55067-ss46526268 23/18.58 SEQ ID NO 173 ARS-BFGL-NGS-75935 21/24.69 SEQ ID NO 176 Hapmap26742-BTA-156593 17/42.53 SEQ ID NO 177 ARS-BFGL-NGS-39305 13/4.74  SEQ ID NO 183 ARS-BFGL-NGS-115608 21/24.71 SEQ ID NO 185 BTB-01011603 29/21.15 SEQ ID NO 187 ARS-BFGL-NGS-24141  9/91.47 SEQ ID NO 190 ARS-BFGL-NGS-23356 13/5.26  SEQ ID NO 191 ARS-BFGL-NGS-55380 16/22.06 SEQ ID NO 192 Hapmap51102-BTA-97964  6/54.36 SEQ ID NO 193 BTA-34427-no-rs  2/112.67

Still other SNPs that are useful in connection herewith include various SNPs on BTA20, particularly SNPs within the PTGER4 region, and BTA7, particularly SNPs within the IRGM region.

In one embodiment, the collection comprises a group of SNPs comprising one or more of those give in Table A. In another embodiment, the collection of polynucleotides comprises each of the foregoing SNPs. In one presently preferred embodiment, the following table (Table C) using exemplar SNPs can be used to construct a polynomial equation for predicting the association of a particular SNP or collection of SNPs with the trait of an increased susceptibility to contracting paratuberculosis.

Table C: Factors for predicting an increased susceptibility to contracting paratuberculosis using specific SNP

TABLE C Coefficients for SNPs in final model: P < 0.01 threshold. Parameter Estimate SE¹ P-value Intercept 5.395 1.074 5.05 × 10⁻⁷ Estimate Estimate Parameter 0 vs 2 SE¹ P-value 1 vs 2 SE¹ P-value 0/1/2 BTB-01342789 −0.140 0.256 5.85 × 10⁻¹ 0.671 0.260 9.85 × 10⁻³ TT/TC/CC BTA-114108-no-rs −0.200 0.282 4.77 × 10⁻¹ −0.543 0.184 3.23 × 10⁻³ AA/AC/CC BTB-01112664 1.138 0.327 5.04 × 10⁻⁴ −0.397 0.195 4.19 × 10⁻² TT/TG/GG ARS-BFGL-NGS-118058 0.444 0.187 1.73 × 10⁻² 0.152 0.148 3.06 × 10⁻¹ AA/AG/AG Hapmap58939-rs29011360 0.875 0.289 2.45 × 10⁻³ −0.196 0.191 3.05 × 10⁻¹ AA/AG/AG BTB-01278461 −1.393 0.460 2.48 × 10⁻³ −0.086 0.481 8.59 × 10⁻¹ TT/TC/CC BTA-72108-no-rs −0.525 0.355 1.39 × 10⁻¹ −1.536 0.406 1.57 × 10⁻⁴ TT/TC/CC ARS-BFGL-NGS-34254 −0.016 0.164 9.24 × 10⁻¹ −0.541 0.165 1.06 × 10⁻³ TT/TC/CC BTB-00261837 0.755 0.211 3.35 × 10⁻⁴ 0.158 0.155 3.08 × 10⁻¹ TT/TC/CC ARS-BFGL-NGS-103845 −0.183 0.180 3.09 × 10⁻¹ 0.514 0.148 5.17 × 10⁻⁴ TT/TC/CC Hapmap41410-BTA- −1.821 0.943 5.35 × 10⁻² −0.121 0.961 9.00 × 10⁻¹ TT/TC/CC 104176 ARS-BFGL-NGS-32966 0.984 0.573 8.61 × 10⁻² −0.111 0.314 7.24 × 10⁻¹ AA/AG/AG ARS-BFGL-NGS-64241 0.828 0.368 2.42 × 10⁻² 0.021 0.218 9.23 × 10⁻¹ TT/TC/CC BTA-28297-no-rs −0.965 0.231 3.06 × 10⁻⁵ −0.238 0.231 3.03 × 10⁻¹ GG/GC/CC Hapmap57166-rs29020401 −0.773 0.207 1.87 × 10⁻⁴ 0.149 0.219 4.98 × 10⁻¹ AA/AG/AG Hapmap43556-BTA-33007 −0.452 0.252 7.30 × 10⁻² 0.613 0.284 3.05 × 10⁻² AA/AG/AG ARS-BFGL-NGS-32123 −0.092 0.179 6.08 × 10⁻¹ 0.666 0.152 1.10 × 10⁻⁵ TT/TG/GG ARS-BFGL-NGS-55380 −0.817 0.169 1.32 × 10⁻⁶ −0.140 0.159 3.78 × 10⁻¹ AA/AG/AG BTA-116871-no-rs 0.699 0.183 1.33 × 10⁻⁴ −0.941 0.157 2.26 × 10⁻⁹ TT/TC/CC Hapmap26742-BTA- 1.085 0.299 2.82 × 10⁻⁴ 0.099 0.311 7.51 × 10⁻¹ AA/AG/AG 156593 Hapmap49609-BTA-43790 −0.363 0.170 3.25 × 10⁻² −0.532 0.162 1.06 × 10⁻³ AA/AG/AG UA-IFASA-8974 0.709 0.192 2.13 × 10⁻⁴ −0.683 0.155 1.10 × 10⁻⁵ AA/AC/CC ARS-BFGL-NGS-41833 0.333 0.245 1.74 × 10⁻¹ −0.582 0.172 7.08 × 10⁻⁴ TT/TG/GG ARS-BFGL-NGS-75935 0.399 0.198 4.37 × 10⁻² 0.714 0.208 5.79 × 10⁻⁴ TT/TC/CC Hapmap54042-ss46526396 1.278 0.216 3.30 × 10⁻⁹ −0.250 0.155 1.07 × 10⁻¹ TT/TC/CC Hapmap51130-BTA- −0.569 0.207 6.04 × 10⁻³ −0.165 0.152 2.79 × 10⁻¹ AA/AG/AG 105627 BTA-60642-no-rs −0.768 0.194 7.19 × 10⁻⁵ −0.196 0.194 3.13 × 10⁻¹ AA/AG/AG ARS-BFGL-NGS-115504 0.884 0.275 1.28 × 10⁻³ −0.003 0.178 9.86 × 10⁻¹ AA/AG/AG BTA-100341-no-rs 0.267 0.188 1.56 × 10⁻¹ 0.682 0.153 8.37 × 10⁻⁶ TT/TG/GG ARS-BFGL-NGS-109845 0.597 0.180 9.27 × 10⁻⁴ −0.134 0.152 3.79 × 10⁻¹ TT/TC/CC ¹Standard error of coefficient estimate.

In one embodiment, the collection comprises a group of SNPs comprising one or more of those give in Table B. In another embodiment, the collection of polynucleotides comprises each of the foregoing SNPs. In one presently preferred embodiment, the following table (Table D) using exemplar SNPs can be used to construct a polynomial equation for predicting the association of a particular SNP or collection of SNPs with the trait of an increased susceptibility to contracting paratuberculosis.

Table D: Factors for predicting an increased susceptibility to contracting paratuberculosis using specific SNP

TABLE D Coefficients for SNPs in final model: P < 0.001 threshold. Parameter Estimate SE¹ P-value Intercept 5.395 1.074 5.05 × 10⁻⁷ Estimate Estimate Parameter 0 vs 2 SE¹ P-value 1 vs 2 SE¹ P-value 0/1/2 BTA-114108-no-rs −0.274 0.248 2.70 × 10⁻¹ −0.366 0.158 2.10 × 10⁻² AA/AC/CC BTB-01112664 1.045 0.264 7.51 × 10⁻⁵ −0.357 0.161 2.61 × 10⁻² TT/TG/GG ARS-BFGL-NGS-118058 0.392 0.152 9.93 × 10⁻³ 0.271 0.126 3.09 × 10⁻² AA/AG/AG BTB-01278461 −1.326 0.496 7.51 × 10⁻³ 0.174 0.513 7.34 × 10⁻¹ TT/TC/CC BTA-72108-no-rs −0.396 0.280 1.57 × 10⁻¹ −1.333 0.325 4.19 × 10⁻⁵ TT/TC/CC BTB-00261837 0.860 0.181 2.09 × 10⁻⁶ 0.027 0.129 8.37 × 10⁻¹ TT/TC/CC Hapmap41410-BTA- −1.751 0.900 5.16 × 10⁻² −0.069 0.913 9.40 × 10⁻¹ TT/TC/CC 104176 ARS-BFGL-NGS-32966 1.114 0.467 1.70 × 10⁻² −0.167 0.257 5.15 × 10⁻¹ AA/AG/AG Hapmap57166-rs29020401 −0.498 0.164 2.38 × 10⁻³ 0.459 0.177 9.53 × 10⁻³ AA/AG/AG ARS-BFGL-NGS-32123 −0.175 0.149 2.38 × 10⁻¹ 0.521 0.125 3.13 × 10⁻⁵ TT/TG/GG ARS-BFGL-NGS-55380 −0.769 0.142 6.31 × 10⁻⁸ −0.043 0.130 7.40 × 10⁻¹ AA/AG/AG BTA-116871-no-rs 0.649 0.154 2.42 × 10⁻⁵ −0.817 0.131 4.44 × 10⁻¹⁰ TT/TC/CC UA-IFASA-8974 0.644 0.153 2.59 × 10⁻⁵ −0.671 0.129 1.90 × 10⁻⁷ AA/AC/CC Hapmap54042-ss46526396 1.021 0.185 3.68 × 10⁻⁸ −0.290 0.133 2.93 × 10⁻² AA/AG/AG Hapmap51130-BTA- −0.346 0.175 4.74 × 10⁻² −0.194 0.130 1.35 × 10⁻¹ AA/AG/AG 105627 ARS-BFGL-NGS-115504 1.237 0.234 1.20 × 10⁻⁷ −0.158 0.151 2.93 × 10⁻¹ AA/AG/AG BTA-100341-no-rs 0.474 0.160 2.98 × 10⁻³ 0.384 0.125 2.19 × 10⁻³ TT/TG/GG ARS-BFGL-NGS-109845 0.748 0.152 8.37 × 10⁻⁷ −0.169 0.129 1.89 × 10⁻¹ TT/TC/CC ¹Standard error of coefficient estimate

In another of its several aspects, this disclosure provides for methods of detecting sequences in a genome that provide an estimate of an increased susceptibility to contracting paratuberculosis probability or which have predictive value regarding an increased susceptibility to contracting paratuberculosis likelihood. In one embodiment, methods for estimating the likelihood of an increased susceptibility to contracting paratuberculosis in one or more members of a cattle population are provided. The methods generally comprise the steps of

-   -   1) providing a collection of one or more polynucleotides, each         of which is at least partially complementary to a sequence in a         cow genome, comprising at least one sequence that is         quantitatively associated with an increased susceptibility to         contracting paratuberculosis with statistical significance of at         least p≤0.01;     -   2) using the collection to determine the presence or absence of         sequences complementary to one or more polynucleotides from the         collection in one or more members of the cattle population         genome, wherein the presence or absence of the complementary         sequences is quantitatively associated with the trait of an         increased susceptibility to contracting paratuberculosis in a         cattle population; and     -   3) estimating the likelihood of an increased susceptibility to         contracting paratuberculosis based on the results of step 2).

The method, as the skilled artisan will appreciate, encompass use of collections of polynucleotides, for example, as described above, which are useful for detecting the presence or absence of sequences in a genome that are predictive of an increased susceptibility to contracting paratuberculosis. In one embodiment, the estimating step comprises a laboratory analysis. In such embodiments, the method comprises a statistical calculation. In other embodiments, the method comprises a field test. In many such embodiments, preferred tests are conveniently used to provide a threshold estimate or a visual indicator of acceptability. Preferably no actual statistical calculation is required for such field tests. Such tests may require the use of a chart, reader or other device to provide a measurement of an increased susceptibility to contracting paratuberculosis rate, or other useful measurement or result that reflects the likelihood of an increased susceptibility to contracting paratuberculosis.

Preferably, the methods provided herein feature a collection of polynucleotides that comprises at least one sequence that is quantitatively associated with an increased susceptibility to contracting paratuberculosis with statistical significance of at least p≤0.01. In other embodiments, the collection comprises at least one sequence that is quantitatively associated with an increased susceptibility to contracting paratuberculosis with statistical significance of at least p≤0.005. Most preferred are methods wherein the collection comprises at least one sequence that is quantitatively associated with an increased susceptibility to contracting paratuberculosis with statistical significance of at least p≤0.001.

The methods preferably are useful for estimating breeding value in cattle, thus preferably feature a collection of polynucleotides that is useful for estimating breeding value in cattle.

In various embodiments, the collection is useful for detecting the presence or absence of one allele of a SNP in the cow genome. Preferably, at least one of the polynucleotides in the collection is complementary to a sequence located on bovine chromosome 20 (BTA20). In another embodiment, at least one of the polynucleotides in the collection is complementary to a sequence located on bovine chromosome 26 (BTA26). In another embodiment, at least one of the polynucleotides in the collection is complementary to a sequence located on bovine chromosome 13(BTA13). In another embodiment, at least one of the polynucleotides in the collection is complementary to a sequence located on bovine chromosome 16 (BTA16). In another embodiment, at least one of the polynucleotides in the collection is complementary to a sequence located on bovine chromosome 21 (BTA21).

In certain embodiments of the methods, at least one of the polynucleotides in the collection is complementary to a sequence that maps between 4-71 Mb of BTA13. In various embodiments, the collection comprises one or more polynucleotides complementary to a sequence that maps at either of 4-6 Mb, 31-34 Mb or 70-72 Mb of BTA13.

In certain embodiments of the methods, at least one of the polynucleotides in the collection is complementary to a sequence that maps between 21-70 Mb of BTA16. In various embodiments, the collection comprises one or more polynucleotides complementary to a sequence that maps at either of 21-23 Mb or 60-70 Mb of BTA16.

In certain embodiments of the methods, at least one of the polynucleotides in the collection is complementary to a sequence that maps between 31-67 Mb of BTA20. Especially preferred are particular regions of chromosome 20, including those that are near or encode certain genes. In various embodiments, the collection comprises one or more polynucleotides complementary to a sequence that maps on BTA20 at either of 31-35 Mb or 65-68 Mb of BTA20. In a currently preferred embodiment, at least one of the polynucleotides is complementary to a sequence that maps between 31-35 Mb of BTA20.

In certain embodiments of the methods, at least one of the polynucleotides in the collection is complementary to a sequence that maps between 19-68 Mb of BTA7. In various embodiments, the collection comprises one or more polynucleotides complementary to a sequence that maps at either of 19-25 Mb or 61-69 Mb of BTA7.

In certain embodiments of the methods, at least one of the polynucleotides in the collection is complementary to a sequence that maps between 34-40 Mb of BTA26. Also useful are polynucleotides that can identify the presence or absence of sequences which map to various overlapping or more specific locations, as set forth in the Examples below.

In a presently preferred method, at least one of the polynucleotides in the collection is complementary to a sequence located in a genomic sequence for Prostaglandin E receptor 4 (“PTGER4”). In another presently preferred method, at least one of the polynucleotides in the collection is complementary to a sequence located in a genomic sequence IRGM.

In other embodiments useful with the methods, the collection comprises at least one polynucleotide useful for detecting one or more of the SNPs: SEQ ID NO: 3; SEQ ID NO: 4; SEQ ID NO: 5; SEQ ID NO: 6; SEQ ID NO: 9; SEQ ID NO: 10; SEQ ID NO: 11; SEQ ID NO: 13; SEQ ID NO: 14; SEQ ID NO: 16; SEQ ID NO: 17; SEQ ID NO: 20; SEQ ID NO: 21; SEQ ID NO: 24; SEQ ID NO: 25; SEQ ID NO: 26; SEQ ID NO: 34; SEQ ID NO: 37; SEQ ID NO: 41; SEQ ID NO: 42; SEQ ID NO: 46; SEQ ID NO: 47; SEQ ID NO: 48; SEQ ID NO: 51; SEQ ID NO: 55; SEQ ID NO: 57; SEQ ID NO: 59; SEQ ID NO: 60; SEQ ID NO: 61; SEQ ID NO: 66.

In currently preferred embodiment embodiments useful with the methods, the collection comprises at least one polynucleotide useful for detecting one or more of the SNPs: SEQ ID NO: 4; SEQ ID NO: 5; SEQ ID NO: 6; SEQ ID NO: 10; SEQ ID NO: 11; SEQ ID NO: 14; SEQ ID NO: 17; SEQ ID NO: 20; SEQ ID NO: 25; SEQ ID NO: 34; SEQ ID NO: 37; SEQ ID NO: 41; SEQ ID NO: 47; SEQ ID NO: 55; SEQ ID NO: 57; SEQ ID NO: 60; SEQ ID NO: 61; SEQ ID NO: 66.

The collection can also feature at least one polynucleotide that is in high LD to any of the above SNPs useful for detecting one or more of the SNPs. These polynucleotides would be able to be determined by an average practitioner skilled in the art once the practitioner knows the above-given SNPs.

In yet another of its several aspects, this disclosure provides kits that comprise one or more of the collections of polynucleotides useful for detecting sequences in a genome that are quantitatively associated with an increased susceptibility to contracting paratuberculosis, and instructions for use of the collection(s) for estimating breeding value or predicting the likelihood of an increased susceptibility to contracting paratuberculosis.

These and other aspects of the invention will be further illustrated by the following working examples which are included to augment, not limit the understanding and communication of the invention, as expressed in the appended claims.

Examples

The invention can be further illustrated by the following examples, although it will be understood that these examples included merely for purposes of illustrating and better describing certain aspects of what is disclosed herein. The examples do not limit the scope of the invention unless otherwise specifically indicated.

Two resource populations of approximately 5,000 cows each were used to identify genomic regions associated with susceptibility to infection by MAP. The first population (Population 1) consisted primarily of twelve Holstein paternal half-sib families of daughters of sires heavily used within the breed. Cows were specifically chosen to be in second or later lactation to increase the likelihood of identifying cows manifesting evidence of infection. The second resource population consisted of cows from six Holstein herds in Wisconsin. Blood samples were obtained from all cows in these herds over a period of 15 months in 2006-07.

Phenotype for MAP infection in Population 1 was based on both fecal culture of MAP and evidence of antibody titer to MAP as based on an ELISA test. Samples had been previously tested using the IDEXX ELISA (Gonda et al., 2006), but were re-tested for this study using a more recently developed ELISA with higher sensitivity (Shin et al., 2008). Phenotypes for Population 2 were ELISA results, also with the recently developed, higher sensitivity test.

Samples from both populations were genotyped with bead chips. Animals with fewer than 95% successfully scored genotypes and markers that were successfully scored for fewer than 90% of the samples in either of the two resource populations were removed prior to statistical analyses. In addition, SNPs with unknown genomic location or with minor allele frequencies below 5% were not included in analyses. After exclusion for these various reasons, a total of 35,772 SNPs remained.

Given the known paternal half-sib family structure in Population 1, female samples were checked for paternity relative to potential sires using a subset of 200 SNPs with high minor allele frequency. Of 233 females, 205 were verified as daughters of project sires.

Analysis of data from Population 1 accounted for the paternal half-sib family structure in the population. Inheritance of paternal and maternal haplotypes in Population 1 was determined using a Fortran program (de Roos et al., 2008) that compared sire and offspring genotypes. Paternally inherited haplotypes at each marker bracket were evaluated for deviation from a frequency of 0.5 expected under the null hypothesis of no linkage using a z test calculated as:

${z = \frac{\;{\hat{p}\; - \; 0.5}}{\;\sqrt{\;{\hat{p}\;\hat{q}*\left( {1/n} \right)}}}},$

where p is the frequency of sire haplotype 1, q is 1-p and n is the number of offspring in the family. To combine linkage results across families, p-value for the 12 families were multiplied, and then compared with an empirical distribution of corresponding values obtained by simulation. For the simulation, 12 families of the same size as those in Population 1 were created with sire haplotypes one and two generated under the assumption of equal frequency (null hypothesis). The simulation was repeated one million times to generate an empirical distribution of results for determination of an empirical p-value.

Frequency of maternally inherited alleles from daughters in paternal half-sib families were used for a case-control analysis, in combination with allele frequency estimates from 28 positive cows which were not daughters of the 12 project sires. Maternally inherited allele frequencies were estimated using a single locus, maximum likelihood estimator. The control samples for the case-control analysis were not matching negatives, but rather an extensive sample of Holstein bulls used as artificial insemination (AI) sires. Bull genotype data was obtained from the USDA and Cooperative Dairy DNA Repository (CDDR) cooperators. Bulls were chosen based on birth year to represent population allele frequencies corresponding to the alleles from the MAP infection-positive cows. For Population 1, the sires selected were born between 1979 and 1990 and totaled 748. For Population 2, the selected sires were born between 1987 and 1998 and totaled 2,937. For combined analyses of Populations 1 and 2, the combined set of sires spanned birth years from 1979 to 1998 and totaled 3,271. These sire birth years were chosen considering the average difference in birth year of sires and daughters (9 yrs.) and average difference in age of dams and daughters (3.5 yrs.). Additionally, for Population 1, the alleles considered from cases are those inherited from the cows' mothers. These sire samples provided an accurate estimate of Holstein population allele frequency for comparison with the allele frequency observed in positive cows. The two separate pieces of information (linkage, case-control i.e. linkage disequilibrium) were subsequently combined to yield a combined linkage-linkage disequilibrium result.

Allele frequencies were estimated directly in the second population without consideration of family structure, owing to the use of a large number of sires within the six commercial herds. Genotype data from Population 2 was examined for evidence of stratification or clustering using multidimensional scaling plots and IBS clustering as implemented in PLINK v1.05 (Purcell et al., 2007). There was no evidence of stratification or clustering related to herd or otherwise. As in the analysis of data from Population 1, allele frequency estimates from affected cows were compared with allele frequencies estimated from 6,283 US Holstein AI sires. In contrast to Population 1, where allele frequencies were estimated using maternally inherited haplotypes, and comparison of genotype frequencies with the control group was not feasible, it was also possible in Population 2 to test differences in genotype frequency with the exception of the X chromosome.

A combined analysis across populations was conducted by calculating a weighted average for allele frequency using the estimates obtained as described above for the two populations. The combined allele frequency estimates were compared as described above with population allele frequency estimates based on genotypes from 3,271 Holstein AI sires. This result was combined with results from the linkage analysis from population 1 for an overall linkage-linkage disequilibrium analysis.

The most significant markers from separate and combined case-control and linkage-linkage disequilibrium analyses (n=1,356) were used in logistic regression analysis to identify a subset of markers which could be used in genomic selection. The data set was comprised of the 521 cows from resource populations 1 and 2 positive for MAP infection, as described above, and the 3,271 Holstein AI sires. These 3,792 samples were randomly assigned to ten groups. For model development and cross-validation, nine of the ten groups were combined to comprise a training data set, and the model developed from the training data set was applied in prediction using the remaining group or testing data set. Model efficacy was evaluated by determining percent concordance. A pair of observations with different observed responses (case vs. control) was concordant if the observation with the lower ordered response value had a lower predicted score than the observation with the higher ordered response value. This analysis was repeated for all ten possible combinations. Models were constructed using a forward-stepwise approach with a minimum probability for SNP entry of P<0.005 and a minimum probability for continued inclusion in the model of P<0.001. SNPs chosen for each of the 10 training sets were tabulated, and SNPs appearing in models for at least half of the training sets were used in a final model, with model coefficients estimated from the full data set.

Given the limited family and population size, power of the across-family linkage analysis of Population 1 was relatively low. Additionally, the modest family sizes likely created some errors in haplotype estimation leading to some spurious results (e.g. the strong but isolated linkage result near the telomeric end of BTA5). However, a strong and consistent linkage signal (p≤1×10⁻³) was observed on chromosome 20 (FIG. 1), strengthening and refining a previous observation based on a subset of the population and within-family linkage analysis of microsatellite marker data (Gonda et al., 2007). Suggestive individual SNP associations (p≤5×10⁻⁵) were observed in multiple genomic locations including BTA6, 7, 8, 11, 13, 17, 18, 22, 27, 28 and X. However, no individual marker associations surpassed a more stringent level of 1×10⁻⁷ adopted for significant linkage.

The pattern of results from allelic and genotypic tests of Population 2 were generally consistent, though the specific markers with strongest association varied between tests (FIG. 2). Markers on all chromosomes surpassed a threshold of P<5×10⁻⁵ for either test while at a higher threshold (1×10⁻⁷) significance was observed on BTA1, 2, 3, 4, 6, 7, 9, 10, 11, 12, 13, 16, 17, 21, 22, 25, 29 and X. In general, results from analysis of Population 2 were more significant than Population 1, owing in part to the larger number of bulls used as a control group. Correspondence between the most significant associations from Populations 1 and 2 was not striking.

The combined analysis of Populations 1 and 2 for individual marker association identified significant results (P<1×10⁻⁷) on BTA1, 2, 6, 7, 9, 15, 21 and 24 (FIG. 3). Combining this information with linkage analysis results from Population 1 added BTA5, 20, 22 and 29 to the list.

A total of 1,356 of the most significant markers from the separate and combined analyses were considered in a stepwise logistic regression analysis to identify a subset of markers that could together be used in predicting genomic merit for susceptibility to MAP infection. The cross-validation analysis identified 30 SNPs that appeared in more than half of the models developed with the various subsets of the data (Table 1, FIG. 4). SNPs from seventeen different chromosomes were included, with two or more SNPs included from BTA2, 3, 4, 7, 9, 13, 15, 20, 21, 22 and 29. In one case (BTA21) pairs of SNPs on a common chromosome were in relatively close proximity (<1 Mb), while the remainder were most often in distinct locations (i.e. separated by >20 Mb). A model incorporating the 30 SNPs identified through the cross-validation model development procedure was used on the full data set for purposes of estimating model coefficients (Tables A and B). Based on the concordance of observed and predicted values in the cross-validation testing sets (Table C), a concordance of approximately 72% could be expected. 

What is claimed is:
 1. A method of prophylactically treating paratuberculosis in a population of cattle, comprising the steps of: 1) genotyping a biological sample obtained from one or more members of the cattle population as SNP UA-IFASA-8974 A/C, wherein one copy of BTA20 comprises a polynucleotide segment consisting of SEQ ID NO:53, and the other copy of BTA20 comprises a polynucleotide segment consisting of SEQ ID NO:53 wherein the 61^(st) (central) nucleotide base (C) is substituted with A; and 2) selectively breeding together two or more members of the cattle population that were genotyped in step 1 as SNP UA-IFASA 8974 A/C; whereby paratuberculosis in the cattle population is prophylactically treated.
 2. The method of claim 1 wherein step 1 is performed using a bead chip.
 3. The method of claim 2 wherein step 1 comprises a field test.
 4. The method of claim 3 wherein step 1 comprises using a visual indicator.
 5. The method of claim 2 wherein the bead chip is useful for estimating breeding value in cattle. 